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Taxonomic Conversational Case-Based Reasoning

机译:基于分类的对话案例的推理

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Conversational Case-Based Reasoning (CCBR) systems engage a user in a series of questions and answers to retrieve cases that solve his/her current problem. Help-desk and interactive troubleshooting systems are among the most popular implementations of the CCBR methodology. As in traditional CBR systems, features in a CCBR system can be expressed at varying levels of abstraction. In this paper, we identify the sources of abstraction and argue that they are uncontrollable in applications typically targeted by CCBR systems. We contend that ignoring abstraction in CCBR can cause representational inconsistencies, adversely affect retrieval and conversation performance, and lead to case indexing and maintenance problems. We propose an integrated methodology called Taxonomic CCBR that uses feature taxonomies for handling abstraction to correct these problems. We describe the benefits and limitations of our approach and examine issues for future research.
机译:基于对话的案例的推理(CCBR)系统在一系列问题和答案中接触用户以检索解决他/她当前问题的情况。帮助办公室和交互式故障排除系统是CCBR方法中最流行的实现之一。与传统的CBR系统一样,CCBR系统中的功能可以以不同的抽象级别表达。在本文中,我们确定了抽象来源,并争辩说,它们在通常由CCBR系统定位的应用中无法控制。我们争辩说,CCBR中的忽略抽象可能导致代表性不一致,对检索和对话性能产生不利影响,导致案例索引和维护问题。我们提出了一种称为分类学CCBR的综合方法,该方法使用特征分类来处理抽象以纠正这些问题。我们描述了我们方法的好处和局限性,并检查了未来研究的问题。

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